A clusterwise simultaneous component method for capturing within-cluster differences in component variances and correlations

Br J Math Stat Psychol. 2013 Feb;66(1):81-102. doi: 10.1111/j.2044-8317.2012.02040.x. Epub 2012 Feb 7.

Abstract

This paper presents a clusterwise simultaneous component analysis for tracing structural differences and similarities between data of different groups of subjects. This model partitions the groups into a number of clusters according to the covariance structure of the data of each group and performs a simultaneous component analysis with invariant pattern restrictions (SCA-P) for each cluster. These restrictions imply that the model allows for between-group differences in the variances and the correlations of the cluster-specific components. As such, clusterwise SCA-P is more flexible than the earlier proposed clusterwise SCA-ECP model, which imposed equal average cross-products constraints on the component scores of the groups that belong to the same cluster. Using clusterwise SCA-P, a finer-grained, yet parsimonious picture of the group differences and similarities can be obtained. An algorithm for fitting clusterwise SCA-P solutions is presented and its performance is evaluated by means of a simulation study. The value of the model for empirical research is illustrated with data from psychiatric diagnosis research.

MeSH terms

  • Aggression / psychology
  • Algorithms
  • Analysis of Variance
  • Child
  • Cluster Analysis*
  • Empirical Research
  • Helping Behavior
  • Humans
  • Principal Component Analysis / methods*
  • Psychometrics / statistics & numerical data
  • Social Environment